Wang Yifan, Yan Guoli, Zhu Haikuan, Buch Sagar, Wang Ying, Haacke Ewart Mark, Hua Jing, Zhong Zichun
IEEE Trans Vis Comput Graph. 2021 Feb;27(2):1301-1311. doi: 10.1109/TVCG.2020.3030374. Epub 2021 Jan 28.
The fundamental motivation of the proposed work is to present a new visualization-guided computing paradigm to combine direct 3D volume processing and volume rendered clues for effective 3D exploration. For example, extracting and visualizing microstructures in-vivo have been a long-standing challenging problem. However, due to the high sparseness and noisiness in cerebrovasculature data as well as highly complex geometry and topology variations of micro vessels, it is still extremely challenging to extract the complete 3D vessel structure and visualize it in 3D with high fidelity. In this paper, we present an end-to-end deep learning method, VC-Net, for robust extraction of 3D microvascular structure through embedding the image composition, generated by maximum intensity projection (MIP), into the 3D volumetric image learning process to enhance the overall performance. The core novelty is to automatically leverage the volume visualization technique (e.g., MIP - a volume rendering scheme for 3D volume images) to enhance the 3D data exploration at the deep learning level. The MIP embedding features can enhance the local vessel signal (through canceling out the noise) and adapt to the geometric variability and scalability of vessels, which is of great importance in microvascular tracking. A multi-stream convolutional neural network (CNN) framework is proposed to effectively learn the 3D volume and 2D MIP feature vectors, respectively, and then explore their inter-dependencies in a joint volume-composition embedding space by unprojecting the 2D feature vectors into the 3D volume embedding space. It is noted that the proposed framework can better capture the small/micro vessels and improve the vessel connectivity. To our knowledge, this is the first time that a deep learning framework is proposed to construct a joint convolutional embedding space, where the computed vessel probabilities from volume rendering based 2D projection and 3D volume can be explored and integrated synergistically. Experimental results are evaluated and compared with the traditional 3D vessel segmentation methods and the state-of-the-art in deep learning, by using extensive public and real patient (micro- )cerebrovascular image datasets. The application of this accurate segmentation and visualization of sparse and complicated 3D microvascular structure facilitated by our method demonstrates the potential in a powerful MR arteriogram and venogram diagnosis of vascular disease.
本文提出的工作的基本动机是呈现一种新的可视化引导计算范式,将直接的三维体数据处理与体绘制线索相结合,以实现有效的三维探索。例如,在体内提取和可视化微观结构一直是一个长期存在的具有挑战性的问题。然而,由于脑血管数据的高度稀疏性和噪声,以及微血管高度复杂的几何形状和拓扑变化,提取完整的三维血管结构并以高保真度进行三维可视化仍然极具挑战性。在本文中,我们提出了一种端到端的深度学习方法VC-Net,通过将由最大强度投影(MIP)生成的图像合成嵌入到三维体图像学习过程中,以增强整体性能,从而稳健地提取三维微血管结构。核心创新点在于自动利用体可视化技术(例如,MIP——一种用于三维体图像的体绘制方案)在深度学习层面增强三维数据探索。MIP嵌入特征可以增强局部血管信号(通过消除噪声)并适应血管的几何变异性和可扩展性,这在微血管跟踪中非常重要。我们提出了一个多流卷积神经网络(CNN)框架,分别有效地学习三维体特征向量和二维MIP特征向量,然后通过将二维特征向量反投影到三维体嵌入空间中,在联合体-合成嵌入空间中探索它们的相互依赖性。值得注意的是,所提出的框架可以更好地捕捉小/微血管并改善血管连通性。据我们所知,这是首次提出一种深度学习框架来构建联合卷积嵌入空间,在该空间中,可以协同探索和整合基于体绘制的二维投影和三维体计算出的血管概率。通过使用大量公开的和真实患者的(微观)脑血管图像数据集,对实验结果进行了评估,并与传统的三维血管分割方法和深度学习领域的最新技术进行了比较。我们的方法实现的对稀疏且复杂的三维微血管结构的精确分割和可视化应用,证明了其在强大的磁共振血管造影和静脉造影诊断血管疾病方面的潜力。